(R, quantreg): Hypothesis testing a large range of quantiles

I have a quantile regression model with 1 regressor and 1 regressand. I want to hypothesis test that the regressor is equal over every quantile. One approach I've thought of is to test over all tau over {0.01,0.02,....,0.99}. However, I would then have to write:

`anova(model1,model2,model3,.......,model99)`, where each model corresponds to a different tau. Question: How do I get anova() to accept large amount of models of type `rq` without manually typing them out?

My attempt at a solution has been to do this:

``````y = rnorm(100)
x = rnorm(100)

rqs_object <- rq(y~x,tau=1:99/100)
anova(rqs_object)
``````

However, `anova` clearly doesn't take object type `rqs`, only type `rq`, unfortunately.

Cross posted here until I decided that it had a large programming/specialist element to the problem .

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You should not ask multiple questions at once. – Roland Aug 25 '12 at 9:21
Ok I didn't know that. I'll delete the second one. – user1125946 Aug 25 '12 at 9:49

I concentrate on question 1 and only on the programming part.

some data:

``````set.seed(65465)
y = rnorm(100)
x = rnorm(100)
``````

Now I define a function, that takes tau as input and does the fit:

``````rqfits <- function(tau) {
require(quantreg)
rq(y~x,tau=tau)
}
``````

I can then apply this function on a vector of taus:

``````taus <- 1:5/10
fits <- lapply(taus,rqfits)
``````

The result is a list of models. We can now use `do.call` to pass our models to `anova`:

``````do.call(anova,fits)

Quantile Regression Analysis of Deviance Table

Model: y ~ x
Joint Test of Equality of Slopes: tau in {  0.1 0.2 0.3 0.4 0.5  }

Df Resid Df F value Pr(>F)
1  4      496  1.0388 0.3866
Warning:
In summary.rq(x, se = se, covariance = TRUE) : 2 non-positive fis
``````
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@user1125946 I edited my answer, because I just remembered that `do.call` exists. – Roland Aug 25 '12 at 10:57